Balanced Quality Score: Measuring Popularity Debiasing in Recommendation

Author:

Coppolillo Erica1ORCID,Minici Marco2ORCID,Ritacco Ettore3ORCID,Caroprese Luciano4ORCID,Pisani Francesco5ORCID,Manco Giuseppe5ORCID

Affiliation:

1. University of Calabria, Rende, Italy and ICAR-CNR, Rende, Italy

2. University of Pisa, Pisa, Italy and ICAR-CNR, Rende, Italy

3. University of Udine, Udine, Italy

4. University of Chieti-Pescara, Chieti, Italy

5. ICAR-CNR, Cosenza, Italy

Abstract

Popularity bias is the tendency of recommender systems to further suggest popular items while disregarding niche ones, hence giving no chance for items with low popularity to emerge. Although the literature is rich in debiasing techniques, it still lacks quality measures that effectively enable their analyses and comparisons. In this article, we first introduce a formal, data-driven, and parameter-free strategy for classifying items into low, medium, and high popularity categories. Then we introduce Balanced Quality Score (BQS) , a quality measure that rewards the debiasing techniques that successfully push a recommender system to suggest niche items, without losing points in its predictive capability in terms of global accuracy. We conduct tests of BQS on three distinct baseline collaborative filtering frameworks: one based on history-embedding and two on user/item-embedding modeling. These evaluations are performed on multiple benchmark datasets and against various state-of-the-art competitors, demonstrating the effectiveness of BQS.

Funder

Departmental Strategic Plan (PSD) of the University of Udine, Interdepartmental Project on Artificial Intelligence

SERICS

EU - NGEU

Publisher

Association for Computing Machinery (ACM)

Reference47 articles.

1. Himan Abdollahpouri Robin Burke and Bamshad Mobasher. 2017. Controlling popularity bias in learning-to-rank recommendation. InProceedings of the ACM Recommender Systems Conference (RecSys ’17). Association for Computing Machinery New York NY. DOI:10.1145/3109859.3109912

2. Himan Abdollahpouri, Robin Burke, and Bamshad Mobasher. 2019. Managing popularity bias in recommender systems with personalized re-ranking. In Proceedings of the International Florida Artificial Intelligence Research Society Conference (FLAIRS ’19). 413–418.

3. Himan Abdollahpouri, Masoud Mansoury, Robin Burke, and Bamshad Mobasher. 2019. The unfairness of popularity bias in recommendation. In Proceedings of the Workshop on Recommendation in Multi-stakeholder Environments (CEUR Workshop Proceedings ’19), Vol. 2440.

4. The Connection Between Popularity Bias, Calibration, and Fairness in Recommendation

5. Improving Aggregate Recommendation Diversity Using Ranking-Based Techniques

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